UserName:
PassWord:
Home >> Working Paper
Non-linear Expectation Theory and Risk Measurement Based on Model Ambiguity
Read        DownLoad
TitleNon-linear Expectation Theory and Risk Measurement Based on Model Ambiguity  
AuthorGong Xiaolin (Caelyn Gong), Yang Shuzhen, Hu Jinyan and Zhang Ning  
OrganizationShandong University 
Emailgcaelyn@gmail.com; 
Key WordsUncertainty; Non-linear Expectation Theory; Model Ambiguity; Risk Measurement 
AbstractWith the approach of multiple-change-point detection for auto-regressive conditional heteroskedastic processes, the paper first demonstrates that economic and financial data has uncertain characteristics of probability and statistics, and thus illustrates the limited applicability of current Probability Theory in a realistic, dynamic economic environment. Then, we analyze how Non-linear Expectation Theory incorporates all kinds of uncertainty, such as volatility uncertainty and mean uncertainty, in risk modelling and measure risk with infinite amount of possible uncertain distributions. Meanwhile the analysis shows that this recent progress in stochastic analysis and calculus might bring fundamental change to risk management theory and practice. And empirical evidence of the effectiveness of risk measurement based on model ambiguity is provided. Thus, the paper is to contribute to the cutting edge research on uncertainty analysis and risk management and to provide important technical support for managing and maintaining financial stability. 
Serial NumberWP944 
Time2015-11-03 
  • Institute of Economics, Chinese Academy of Social Sciences
  • Copyright Economic Research Journal
  • The uploaded articles by this website express the authors’ views, not necessarily the views of this website.
  • Perennial Legal Counsel: Lu Kang (Chong Guang Law Office)
  • ISSN 0577-9154 CN 11-1081/F Postal Distribution Code 2-25l (Domestic) M16 (Overseas)
  • ICP 10211437 (Beijng)
  • No.2,Yuetan Bei Xiaojie, Xicheng District, Beijing 100836, P. R. China
  • Phone/Fax: (+8610) 68034153